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Data consistency condition for truncated projections in fan-beam geometry.X-ray micromodulated luminescence tomography in dual-cone geometryL(p) regularization for early gate fluorescence molecular tomography.Dynamic bowtie filter for cone-beam/multi-slice CT.Dictionary-learning-based reconstruction method for electron tomography.Morphometric differences between central vs. surface acini in A/J mice using high-resolution micro-computed tomography.Tensor-Based Dictionary Learning for Spectral CT ReconstructionHigh-resolution mesoscopic fluorescence molecular tomography based on compressive sensing.Low-dose CT via convolutional neural networkLow-Dose CT with a Residual Encoder-Decoder Convolutional Neural Network (RED-CNN).Model and reconstruction of a K-edge contrast agent distribution with an X-ray photon-counting detector.Fully 3D geometrical calibration for an X-ray grating-based imaging system.Dynamic bowtie for fan-beam CT.X-ray scatter correction for multi-source interior computed tomography.Study of scan protocol for exposure reduction in hybrid spectral micro-CT.A new type of neurons for machine learning.Machine learning will transform radiology significantly within the next 5 years.Top-level design and pilot analysis of low-end CT scanners based on linear scanning for developing countries.Spectral CT Reconstruction with Image Sparsity and Spectral Mean.Generalized Backpropagation Algorithm for Training Second-order Neural Networks.Optical tomographic imaging for breast cancer detection.Z-Index Parameterization for Volumetric CT Image Reconstruction via 3-D Dictionary Learning.Grating Oriented Line-Wise Filtration (GOLF) for Dual-Energy X-ray CT.A mixed reality approach for stereo-tomographic quantification of lung nodules.SART-Type Half-Threshold Filtering Approach for CT Reconstruction.Radiative transfer with delta-Eddington-type phase functions.A novel calibration method incorporating non-linear optimization and ball-bearing markers for cone-beam CT with a parameterized trajectoryImage Reconstruction is a New Frontier of Machine Learning3-D Convolutional Encoder-Decoder Network for Low-Dose CT via Transfer Learning From a 2-D Trained Network.LEARN: Learned Experts' Assessment-Based Reconstruction Network for Sparse-Data CT.A Roadmap for Foundational Research on Artificial Intelligence in Medical Imaging: From the 2018 NIH/RSNA/ACR/The Academy Workshop.Low-Dose CT Image Denoising Using a Generative Adversarial Network With Wasserstein Distance and Perceptual LossSimultaneous Emission-Transmission Tomography in an MRI Hardware FrameworkUniversal approximation with quadratic deep networksKnowledge-Based Analysis for Mortality Prediction From CT ImagesA dual-stream deep convolutional network for reducing metal streak artifacts in CT imagesComparison of deep learning and human observer performance for detection and characterization of simulated lesionsDeep Encoder-Decoder Adversarial Reconstruction(DEAR) Network for 3D CT from Few-View DataShape and margin-aware lung nodule classification in low-dose CT images via soft activation mappingNovel Detection Scheme for X-ray Small-Angle Scattering
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description
researcher (ORCID 0000-0002-2656-7705)
@en
wetenschapper
@nl
name
Ge Wang
@en
Ge Wang
@nl
type
label
Ge Wang
@en
Ge Wang
@nl
prefLabel
Ge Wang
@en
Ge Wang
@nl
P108
P2456
P31
P496
0000-0002-2656-7705